资源论文Accelerated Training for Matrix-norm Regularization: A Boosting Approach

Accelerated Training for Matrix-norm Regularization: A Boosting Approach

2020-01-13 | |  57 |   39 |   0

Abstract

Sparse learning models typically combine a smooth loss with a nonsmooth penalty, such as trace norm. Although recent developments in sparse approximation have offered promising solution methods, current approaches either apply only to matrix-norm constrained problems or provide suboptimal convergence rates. In this paper, we propose a boosting method for regularized learning that guarantees  accuracy within 图片.png iterations. Performance is further accelerated by interlacing boosting with fixed-rank local optimization—exploiting a simpler local objective than previous work. The proposed method yields state-of-the-art performance on large-scale problems. We also demonstrate an application to latent multiview learning for which we provide the first efficient weak-oracle.

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